An Adaptive Slope Sigmoidal Function Cascading Neural Networks
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An Adaptive Slope Sigmoidal Function Cascading Neural Networks
abstractECascade 2 algorithm is a variant of Cascade. Correlation algorithm that is a well known and widely used constructive neural networks algorithm.
Third International Conference on Emerging Trends in Engineering and Technology